Cognitive Telecommunication Research Group, Department of Electrical Engineering, Shahid Beheshti University G. C., Tehran 1983969411, Iran.
Electrical Engineering Research Group, Faculty of Technology and Engineering Research Center, Standard Research Institute, Alborz 31745-139, Iran.
Sensors (Basel). 2021 Oct 30;21(21):7225. doi: 10.3390/s21217225.
The Internet of Things (IoT) has become quite popular due to advancements in Information and Communications technologies and has revolutionized the entire research area in Human Activity Recognition (HAR). For the HAR task, vision-based and sensor-based methods can present better data but at the cost of users' inconvenience and social constraints such as privacy issues. Due to the ubiquity of WiFi devices, the use of WiFi in intelligent daily activity monitoring for elderly persons has gained popularity in modern healthcare applications. Channel State Information (CSI) as one of the characteristics of WiFi signals, can be utilized to recognize different human activities. We have employed a Raspberry Pi 4 to collect CSI data for seven different human daily activities, and converted CSI data to images and then used these images as inputs of a 2D Convolutional Neural Network (CNN) classifier. Our experiments have shown that the proposed CSI-based HAR outperforms other competitor methods including 1D-CNN, Long Short-Term Memory (LSTM), and Bi-directional LSTM, and achieves an accuracy of around 95% for seven activities.
物联网(IoT)由于信息和通信技术的进步而变得非常流行,并且彻底改变了人类活动识别(HAR)的整个研究领域。对于 HAR 任务,基于视觉和基于传感器的方法可以提供更好的数据,但代价是用户不便和社会限制,例如隐私问题。由于 WiFi 设备的普及,在现代医疗保健应用中,使用 WiFi 进行老年人的智能日常活动监测已经变得流行。信道状态信息(CSI)作为 WiFi 信号的特征之一,可用于识别不同的人类活动。我们使用 Raspberry Pi 4 收集了七种不同的人类日常活动的 CSI 数据,并将 CSI 数据转换为图像,然后将这些图像用作二维卷积神经网络(CNN)分类器的输入。我们的实验表明,基于 CSI 的 HAR 优于包括 1D-CNN、长短期记忆(LSTM)和双向 LSTM 在内的其他竞争方法,并且对于七种活动的准确率约为 95%。